US10376245B2 - Information processing device, information processing method, and information processing program - Google Patents
Information processing device, information processing method, and information processing program Download PDFInfo
- Publication number
- US10376245B2 US10376245B2 US15/037,756 US201315037756A US10376245B2 US 10376245 B2 US10376245 B2 US 10376245B2 US 201315037756 A US201315037756 A US 201315037756A US 10376245 B2 US10376245 B2 US 10376245B2
- Authority
- US
- United States
- Prior art keywords
- date
- body temperature
- temperature
- menstrual cycle
- menstrual
- Prior art date
- Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
- Active, expires
Links
- 230000010365 information processing Effects 0.000 title claims abstract description 135
- 238000003672 processing method Methods 0.000 title claims description 6
- 230000036760 body temperature Effects 0.000 claims abstract description 432
- 230000027758 ovulation cycle Effects 0.000 claims abstract description 312
- 238000005259 measurement Methods 0.000 claims abstract description 182
- 230000016087 ovulation Effects 0.000 claims abstract description 130
- 230000002175 menstrual effect Effects 0.000 claims description 130
- 230000006870 function Effects 0.000 claims description 61
- 230000015654 memory Effects 0.000 claims description 7
- 238000004590 computer program Methods 0.000 claims 8
- 238000000034 method Methods 0.000 description 186
- 230000008569 process Effects 0.000 description 144
- 238000010586 diagram Methods 0.000 description 26
- 230000000694 effects Effects 0.000 description 9
- 238000004891 communication Methods 0.000 description 8
- 238000000611 regression analysis Methods 0.000 description 4
- 230000007704 transition Effects 0.000 description 4
- 230000001788 irregular Effects 0.000 description 3
- 238000012935 Averaging Methods 0.000 description 2
- 206010037660 Pyrexia Diseases 0.000 description 2
- 230000001174 ascending effect Effects 0.000 description 2
- 230000005906 menstruation Effects 0.000 description 2
- 238000004364 calculation method Methods 0.000 description 1
- 230000036541 health Effects 0.000 description 1
- 238000010295 mobile communication Methods 0.000 description 1
- 230000003287 optical effect Effects 0.000 description 1
- 238000012545 processing Methods 0.000 description 1
- 230000004044 response Effects 0.000 description 1
- 230000033764 rhythmic process Effects 0.000 description 1
Images
Classifications
-
- A—HUMAN NECESSITIES
- A61—MEDICAL OR VETERINARY SCIENCE; HYGIENE
- A61B—DIAGNOSIS; SURGERY; IDENTIFICATION
- A61B10/00—Instruments for taking body samples for diagnostic purposes; Other methods or instruments for diagnosis, e.g. for vaccination diagnosis, sex determination or ovulation-period determination; Throat striking implements
- A61B10/0012—Ovulation-period determination
-
- G—PHYSICS
- G16—INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR SPECIFIC APPLICATION FIELDS
- G16H—HEALTHCARE INFORMATICS, i.e. INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR THE HANDLING OR PROCESSING OF MEDICAL OR HEALTHCARE DATA
- G16H10/00—ICT specially adapted for the handling or processing of patient-related medical or healthcare data
- G16H10/60—ICT specially adapted for the handling or processing of patient-related medical or healthcare data for patient-specific data, e.g. for electronic patient records
-
- A—HUMAN NECESSITIES
- A61—MEDICAL OR VETERINARY SCIENCE; HYGIENE
- A61B—DIAGNOSIS; SURGERY; IDENTIFICATION
- A61B10/00—Instruments for taking body samples for diagnostic purposes; Other methods or instruments for diagnosis, e.g. for vaccination diagnosis, sex determination or ovulation-period determination; Throat striking implements
- A61B10/0012—Ovulation-period determination
- A61B2010/0019—Ovulation-period determination based on measurement of temperature
Definitions
- the present invention relates to techniques for estimating an ovulation date, based on measured body temperatures.
- Patent Literature 1 discloses that when measurements of body temperature have been obtained for over a predetermined number of menstrual cycles, an ovulation date and menstrual dates are estimated based on measurements determined to be valid among the obtained measurements, and that when the number of menstrual cycles during which measurements have been obtained is less than the predetermined number, the obtained measurements are regarded as valid and used to perform the estimation.
- Patent Literature 1 To ensure estimation accuracy of an ovulation date and menstrual dates, the technique described in Patent Literature 1 requires measurements of body temperature that have been obtained for over the predetermined number of menstrual cycles.
- an object of the present invention to provide an information processing device, an information processing method, and an information processing program that estimate an ovulation date using less menstrual cycles of body temperatures while preventing decrease in estimation accuracy.
- the invention according to claim 1 is an information processing device that includes obtaining means, determining means, and estimating means.
- the obtaining means obtains the equation of a function of date.
- the function approximates the relationship between body temperature data and dates and has a local minimum value and a local maximum value.
- the body temperature data is obtained based on actual measurements during at least one menstrual cycle.
- the determining means determines a low-temperature-phase reference body temperature, based on a plurality of days of body temperature data that are identified based on the date corresponding to the local minimum value in the function defined by the equation obtained by the obtaining means.
- the determining means determines a high-temperature-phase reference body temperature, based on a plurality of days of body temperature data that are identified based on the date corresponding to the local maximum value in the function.
- the estimating means estimates an ovulation date in the current menstrual cycle, based on a determination reference body temperature set at a value between the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature that are determined by the determining means and on measurement data including a plurality of days of the body temperature data associated with dates.
- an information processing device obtains the equation of a function of date that approximates the relationship between body temperature data and dates and that has a local minimum value and a local maximum value.
- the information processing device can respectively identify the dates corresponding to the local minimum value and the local maximum value as dates included in a low-temperature phase and a high-temperature phase, while reducing the effect of noise in actual measurements.
- the information processing device estimates an ovulation date, based on a low-temperature-phase reference body temperature and a high-temperature-phase reference body temperature. Consequently, the effect of noise in actual measurements is reduced, and it becomes possible to estimate an ovulation date using less menstrual cycles of body temperatures while preventing decrease in estimation accuracy.
- the invention according to claim 2 is the information processing device according to claim 1 in which the estimating means identifies a date on which body temperature data becomes higher than the determination reference body temperature as a reference date, in a period included in the measurement data, and estimates the ovulation date, based on the reference date.
- the invention according to claim 3 is the information processing device according to claim 1 in which when there are a plurality of candidate dates on which the body temperature data is higher than the determination reference body temperature and whose preceding day's body temperature data is lower than the determination reference body temperature, during the period from a predetermined number of days after the date corresponding to the local minimum value to a predetermined number of days before the date corresponding to the local maximum value, the estimating means determines one candidate date to be a reference date, based on a predetermined criterion, and estimates the ovulation date, based on the reference date.
- a reference date is properly identified even if measurement data includes any noise. Consequently, estimation accuracy is improved.
- the invention according to claim 4 is the information processing device according to claim 1 in which the estimating means identifies a date on which body temperature calculated by using the equation obtained by the obtaining means becomes higher than the determination reference body temperature as a reference date, and estimates the ovulation date, based on the reference date.
- an ovulation date is estimated base on the function with less effect of noise. Consequently, decrease in estimation accuracy is prevented.
- the invention according to claim 5 is the information processing device according to any one of claims 1 to 4 in which the obtaining means obtains the equation of the function that approximates the relationship between body temperature data obtained based on actual measurements during at least one previous menstrual cycle and on actual measurements during the current menstrual cycle and dates.
- the information processing device obtains the equation of the function also using the actual measurements during the current menstrual cycle. This allows changes in body temperature during the current menstrual cycle to be reflected in the function. Consequently, estimation accuracy is improved.
- the invention according to claim 6 is the information processing device according to claim 5 in which the obtaining means assigns a higher weight to the actual measurements during the current menstrual cycle than to the actual measurements during the previous menstrual cycle, calculates a weighted average of each actual measurement during the previous menstrual cycle and a corresponding actual measurement during the current menstrual cycle, and obtains the equation of the function that approximates a relationship between body temperature data including the weighted averages and dates.
- the information processing device obtains the equation of a curve graph while placing more weight on the actual measurements during the current menstrual cycle than on the actual measurements during the previous menstrual cycle. This allows changes in body temperature during the current menstrual cycle to be further reflected in the function. Consequently, estimation accuracy is improved.
- the invention according to claim 7 is the information processing device according to any one of claims 1 to 6 further including the second obtaining means, the second determining means, the second estimating means, and the identifying means.
- the second obtaining means obtains a plurality of equations of mutually different degrees of a plurality of functions. Each function approximates the relationship between body temperature data and dates and has a local minimum value and a local maximum value.
- the body temperature data is obtained based on actual measurements during at least one previous menstrual cycle.
- the second determining means determines a low-temperature-phase reference body temperature, based on a plurality of days of actual measurements that are identified based on the date corresponding to the local minimum value, and determines a high-temperature-phase reference body temperature, based on a plurality of days of actual measurements that are identified based on the date corresponding to the local maximum value.
- the second estimating means estimates a menstrual date in the at least one previous menstrual cycle, based on a body temperature set at a value between the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature that are determined by the second determining means and on a plurality of days of the actual measurements.
- the identifying means identifies the degree of an equation that minimizes the difference between a menstrual date estimated by the second estimating means and an actual menstrual date, from among the plurality of equations obtained by the second obtaining means.
- the obtaining means obtains the equation of the degree identified by the identifying means.
- the information processing device determines the degree that maximizes estimation accuracy of the menstrual date in the previous menstrual cycle, among the plurality of degrees, to be the degree of the equation for estimating an ovulation date in the current menstrual cycle. Consequently, estimation accuracy is improved.
- the invention according to claim 8 is the information processing device according to any one of claims 1 to 7 in which the obtaining means obtains the equation of the function that approximates the relationship between body temperature data and dates, and the body temperature data is obtained based on actual measurements during at least one previous menstrual cycle and on actual measurements during the current menstrual cycle.
- the information processing device further includes determination means. The determination means determines whether the reliability of the actual measurements during the current menstrual cycle meets a predetermined requirement, based on the actual measurements during the at least one previous menstrual cycle.
- the estimating means estimates the ovulation date based on information about the at least one previous menstrual cycle, without using either the low-temperature-phase reference body temperature or the high-temperature-phase reference body temperature that is determined based on the actual measurements during the current menstrual cycle.
- the information processing device when the reliability of actual measurements during the current menstrual cycle is low, the information processing device does not use the actual measurements during the current menstrual cycle. Consequently, decrease in estimation accuracy due to using actual measurements during the current menstrual cycle is prevented.
- the invention according to claim 9 is the information processing device according to any one of claims 1 to 8 in which when the difference between a plurality of previous menstrual cycles and the average of the plurality of menstrual cycles is less than or equal to a predetermined value, the estimating means estimates the ovulation date and the next menstrual date based on the average of the plurality of menstrual cycles, without using either the low-temperature-phase reference body temperature or the low-temperature-phase reference body temperature.
- the information processing device improves estimation accuracy, even without using the equation of a curve graph that approximates a graph of changes in body temperature.
- the invention according to claim 10 is the information processing device according to claim 9 in which when the difference between a menstrual date estimated based on the average of the plurality of menstrual cycles and an actual menstrual date is greater than a predetermined value, the estimating means estimates an ovulation date in the current menstrual cycle, based on the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature that are determined by using the equation of the function that approximates the relationship between body temperature data and dates, and the body temperature data is obtained based on actual measurements during at least one previous menstrual cycle and actual measurements during the current menstrual cycle.
- the information processing device estimates an ovulation date in the current menstrual cycle by using the equation of a curve graph that approximates a graph of changes in body temperature, without using the average of previous menstrual cycles. Consequently, when the preceding menstrual cycle was irregular, decrease in estimation accuracy due to using the average of previous menstrual cycles is prevented.
- the invention according to claim 11 is an information processing method performed by a computer.
- the method includes the following steps.
- the equation of a function of date is obtained.
- the function approximates the relationship between body temperature data and dates and has a local minimum value and a local maximum value.
- the body temperature data is obtained based on actual measurements during at least one menstrual cycle.
- a low-temperature-phase reference body temperature is determined based on a plurality of days of body temperature data that are identified based on the date corresponding to the local minimum value in the function defined by the obtained equation.
- a high-temperature-phase reference body temperature is determined based on a plurality of days of body temperature data that are identified based on the date corresponding to the local maximum value in the function.
- An ovulation date in the current menstrual cycle is estimated based on a determination reference body temperature set at a value between the determined low-temperature-phase reference body temperature and the determined high-temperature-phase reference body temperature and on measurement data including a plurality of days of the body temperature data associated with dates.
- the invention according to claim 12 is an information processing program that causes a computer to function as obtaining means, determining means, and estimating means.
- the obtaining means obtains the equation of a function of date.
- the function approximates the relationship between body temperature data and dates and has a local minimum value and a local maximum value.
- the body temperature data is obtained based on actual measurements during at least one menstrual cycle.
- the determining means determines a low-temperature-phase reference body temperature, based on a plurality of days of body temperature data that are identified based on the date corresponding to the local minimum value in the function defined by the equation obtained by the obtaining means.
- the determining means determines a high-temperature-phase reference body temperature, based on a plurality of days of body temperature data that are identified based on the date corresponding to the local maximum value in the function.
- the estimating means estimates an ovulation date in the current menstrual cycle, based on a determination reference body temperature set at a value between the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature that are determined by the determining means and on measurement data including a plurality of days of the body temperature data associated with dates.
- an information processing device obtains the equation of a function of date that approximates the relationship between body temperature data and dates and that has a local minimum value and a local maximum value.
- the information processing device can respectively identify the dates corresponding to the local minimum value and the local maximum value as dates included in a low-temperature phase and a high-temperature phase, while reducing the effect of noise in actual measurements.
- the information processing device estimates an ovulation date, based on a low-temperature-phase reference body temperature and a high-temperature-phase reference body temperature. Consequently, the effect of noise in actual measurements is reduced, and it becomes possible to estimate an ovulation date using less menstrual cycles of body temperatures while preventing decrease in estimation accuracy.
- FIG. 1 is a diagram schematically showing an example configuration of an information processing system S according to an embodiment.
- FIG. 2A is a block diagram schematically showing an example configuration of an information processing server 1 according to an embodiment.
- FIG. 2B is a diagram showing example functional blocks of a system controller 14 according to an embodiment.
- FIG. 3A is a diagram showing example contents stored in a member information DB 12 a.
- FIG. 3B is a diagram showing example contents stored in a body temperature DB 12 b.
- FIG. 3C is a diagram showing example contents stored in a menstrual date DB 12 c.
- FIG. 4A is a graph showing example changes in actual measurement.
- FIG. 4B is a diagram overlaying a graph G 1 on a graph G 2 so that the first day of the preceding menstrual cycle coincides with the first day of the current menstrual cycle.
- FIG. 5A is a graph showing example changes in body temperature data and an example result of regression analysis.
- FIG. 5B is a diagram showing an example relationship between a graph G 3 of changes in body temperature data and an estimated ovulation date.
- FIG. 6 is a flowchart showing an example process of an estimation process in the system controller 14 of the information processing server 1 according to an embodiment.
- FIG. 7 is a diagram showing an example screen display of an estimation result.
- FIG. 8 is a flowchart showing an example process of a basal body temperature method estimation process in the system controller 14 of the information processing server 1 according to an embodiment.
- FIG. 9 is a diagram showing an example relationship between a curve graph G 4 and an estimated ovulation date.
- FIG. 10 is a flowchart showing an example process of the basal body temperature method estimation process in the system controller 14 of the information processing server 1 according to an embodiment.
- FIG. 11 is a diagram showing example functional blocks of the system controller 14 according to an embodiment.
- FIG. 12 is a flowchart showing an example process of the estimation process in the system controller 14 of the information processing server 1 according to an embodiment.
- FIG. 13A is a flowchart showing an example process of a degree determination process in the system controller 14 of the information processing server 1 according to an embodiment.
- FIG. 13B is a flowchart showing an example process of the basal body temperature method estimation process in the system controller 14 of the information processing server 1 according to an embodiment.
- FIG. 14 is a diagram showing example functional blocks of the system controller 14 according to an embodiment.
- FIG. 15 is a flowchart showing an example process of the estimation process in the system controller 14 of the information processing server 1 according to an embodiment.
- FIG. 16A is a flowchart showing an example process of a menstrual cycle method estimation process in the system controller 14 of the information processing server 1 according to an embodiment.
- FIG. 16B is a flowchart showing an example process of a reliability determination process in the system controller 14 of the information processing server 1 according to an embodiment.
- FIG. 17 is a flowchart showing an example process of the reliability determination process in the system controller 14 of the information processing server 1 according to an embodiment.
- FIG. 18 is a flowchart showing an example process of the estimation process in the system controller 14 of the information processing server 1 according to an embodiment.
- FIG. 19 is a flowchart showing an example process of the menstrual cycle method estimation process in the system controller 14 of the information processing server 1 according to an embodiment.
- FIG. 20 is a diagram showing an example relationship between a graph of changes in body temperature data, a curve graph that approximates the graph of the changes, and candidates for a reference date.
- FIG. 21 is a flowchart showing an example process of the basal body temperature method estimation process in the system controller 14 of the information processing server 1 according to this embodiment.
- FIG. 1 is a diagram schematically showing an example configuration of the information processing system S according to this embodiment.
- the information processing system S includes an information processing server 1 , a plurality of user terminals 2 , and a plurality of thermometers 3 .
- the information processing server 1 can exchange data with each user terminal 2 over a network NW using communication protocols, such as TCP/IP.
- the network NW includes, for example, the Internet, a dedicated communication line (e.g., community antenna television (CATV) line), a mobile communication network (including base stations), and a gateway.
- CATV community antenna television
- the information processing server 1 is a server device that delivers information about the health of a woman to the user terminal 2 .
- the information processing server 1 obtains, from the user terminal 2 , information about, for example, the user's basal body temperatures and menstrual dates.
- the information processing server 1 estimates an ovulation date and the next menstrual date of the user, based on the obtained information.
- the user terminal 2 is a terminal device of a user who uses the information processing system S.
- the user terminal 2 may be, for example, a smartphone, a tablet computer, a personal digital assistant (PDA), a mobile phone, or a personal computer.
- the user terminal 2 sends basal body temperatures measured by the thermometer 3 to the information processing server 1 .
- the user terminal 2 also sends actual menstrual dates entered by the user to the information processing server 1 .
- the user terminal 2 displays information about an ovulation date and a menstrual date that are estimated by the information processing server 1 .
- the thermometer 3 is a digital thermometer that measures the basal body temperature of the user.
- the thermometer 3 sends the measured body temperature to the user terminal 2 , for, example, via near field communication.
- the user may manually enter the body temperature measured by a thermometer into the user terminal 2 .
- the user takes her body temperature with the thermometer 3 on a daily basis. An actually measured body temperature is referred to as an actual measurement.
- a menstrual cycle is identified.
- the menstrual cycle is the period from the preceding menstrual date to the day before the next menstrual date.
- the information processing server 1 determines the first day of the menstruation to be a menstrual date used to identify the menstrual cycle.
- the information processing server 1 estimates an ovulation date, based on body temperatures measured for menstrual cycle(s).
- the information processing server 1 estimates the next menstrual date, based on the estimated ovulation date.
- the ovulation date thus estimated is referred to as an estimated ovulation date
- the menstrual date thus estimated is referred to as an estimated menstrual date.
- the information processing server 1 performs the estimation by using the equation (regression equation) of a function that approximates changes in body temperature, using regression analysis.
- This estimation method is referred to as a basal body temperature method. How to estimate an ovulation date is described in detail later.
- the following describes a configuration of the information processing server 1 with reference to FIGS. 2A to 3C .
- FIG. 2A is a block diagram schematically showing an example configuration of the information processing server 1 according to this embodiment.
- the information processing server 1 includes a communication unit 11 , a storage unit 12 , an input/output interface 13 , and a system controller 14 .
- the system controller 14 and the input/output interface 13 are connected via a system bus 15 .
- the communication unit 11 connects to the network NW and controls the state of communications with, for example, the user terminals 2 .
- the storage unit 12 includes, for example, hard disk drives.
- the storage unit 12 is an example of storage means.
- a member information DB 12 a member information DB 12 , a body temperature DB 12 b , a menstrual date DB 12 c , and other databases are created.
- DB is an abbreviation for database.
- FIG. 3A is a diagram showing example contents stored in the member information DB 12 a .
- the member information DB 12 a stores user information about users who use the information processing system S. Specifically, the member information DB 12 a stores, for each user, the user's user ID, password, nickname, name, birth date, gender, zip code, address, telephone number, e-mail address, and other user attributes in association with each other.
- the user ID is identification information of the user.
- FIG. 3B is a diagram showing example contents stored in the body temperature DB 12 b .
- the body temperature DB 12 b stores information about actual measurements. Specifically, the body temperature DB 12 b stores a user ID, a measurement date, and an actual measurement in association with each other.
- the user ID indicates a user who took her body temperature.
- the measurement date indicates the date on which the body temperature was measured.
- the system controller 14 receives, from a user terminal 2 , a user ID of a user who uses the user terminal 2 , a measurement date, and an actual measurement. Then, the system controller 14 stores the received information in the body temperature DB 12 b.
- FIG. 3C is a diagram showing example contents stored in the menstrual date DB 12 c .
- the menstrual date DB 12 c stores information about menstrual dates. Specifically, the menstrual date DB 12 c stores a user ID and a menstrual date in association with each other.
- the user ID indicates the user who entered the menstrual date.
- the system controller 14 receives, from a user terminal 2 , a user ID of a user who uses the user terminal 2 and a menstrual date that the user entered. Then, the system controller 14 stores the received information in the menstrual date DB 12 c.
- the storage unit 12 stores various data, such as HTML documents, extensible markup language (XML) documents, image data, text data, and electronic documents, for displaying web pages.
- the storage unit 12 also stores various setting values, threshold values, constants, and the like.
- the storage unit 12 also stores various programs, such as an operating system, a World Wide Web (WWW) server program, a database management system (DBMS), and an estimation process program.
- the estimation process program is a program for estimating an ovulation date and a menstrual date.
- the estimation process program is an example of an information processing program according to the present invention.
- the various programs may be available from, for example, another server device over the network NW, or may be recorded in a recording medium, such as an optical disk, and be read via a drive device.
- the estimation process program may be a program product.
- the storage unit 12 also stores a terminal application program.
- the terminal application program is a program to be performed by the user terminal 2 .
- the terminal application program is a program for sending information such as actual measurements and menstrual dates to the information processing server 1 and for displaying information such as an estimated ovulation date and an estimated menstrual date.
- the user terminal 2 downloads the terminal application program, for example, from the information processing server 1 .
- the input/output interface 13 performs interface processing between the communication unit 11 and the storage unit 12 , and the system controller 14 .
- the system controller 14 includes, for example, a CPU 14 a , a read only memory (ROM) 14 b , and a random access memory (RAM) 14 c .
- the CPU 14 a is an example of a processor.
- the present invention can also be applied to various processors other than CPUs.
- the storage unit 12 , the ROM 14 b , and the RAM 14 c are each an example of a memory.
- the present invention can also be applied to various memories other than hard disks, ROMs, and RAMs.
- FIG. 2B is a diagram showing example functional blocks of the system controller 14 according to this embodiment.
- the estimation process program and other programs which are read and executed by the CPU 14 a , enable the system controller 14 to function as, for example, a regression equation obtainer 141 , a reference body temperature determiner 142 , and an estimator 143 .
- the regression equation obtainer 141 is an example of obtaining means of the present invention.
- the reference body temperature determiner 142 is an example of determining means of the present invention.
- the estimator 143 is an example of estimating means of the present invention.
- the regression equation obtainer 141 obtains the regression equation of a function that approximates the relationship between body temperature data and dates.
- the temperature data is obtained is obtained based on actual measurements during at least one menstrual cycle.
- a curve graph is used as an example of the function.
- the regression equation obtainer 141 obtains the regression equation of a curve graph that approximates a graph of changes in body temperature.
- the regression equation obtainer 141 can use actual measurements during the current menstrual cycle as well as actual measurements during previous menstrual cycle(s).
- FIG. 4A is a graph showing example changes in actual measurement.
- FIG. 4A shows changes in actual measurement from the preceding menstrual cycle to the current menstrual cycle.
- the current time is within the current menstrual cycle, and thus the last day of the current menstrual cycle has not yet been fixed.
- the graph G 1 shows changes in actual measurement during the preceding menstrual cycle
- the graph G 2 shows changes in actual measurement during the current menstrual cycle.
- the regression equation obtainer 141 uses the actual measurements during the preceding menstrual cycle as actual measurements during a previous menstrual cycle. Based on the actual measurements, the regression equation obtainer 141 determines body temperatures indicating changes to be approximated. These body temperatures are referred to as body temperature data.
- the body temperature data is, for example, a representative value of actual measurements.
- the regression equation obtainer 141 may calculate the average of each pair of actual measurements that were obtained the same number of days after the first day of the corresponding menstrual cycle to be body temperature data.
- the regression equation obtainer 141 may calculate a simple average. If an actual measurement during one of the previous and current menstrual cycles was not obtained certain days after the corresponding first day, the regression equation obtainer 141 may determine an actual measurement during the other menstrual cycle directly to be body temperature data.
- FIG. 4B is a diagram overlaying the graph G 1 on the graph G 2 so that the first day of the preceding menstrual cycle coincides with the first day of the current menstrual cycle.
- FIG. 5A is a graph showing example changes in body temperature data and an example result of regression analysis. Overlaying the graph G 1 on the graph G 2 and taking the average of the graphs gives the graph G 3 of changes in body temperature data as shown in FIG. 5A .
- the regression equation obtainer 141 associates the obtained body temperature data and the corresponding dates (the numbers of days since the menstrual date) with each other. The combination of the body temperature data and the dates that are associated with each other is referred to as measurement data.
- the regression equation obtainer 141 obtains the regression equation of a function that approximates the relationship between the body temperature data and dates. At this time, the regression equation obtainer 141 obtains the regression equation of a function of date that has a local minimum value and a local maximum value. That is, the regression equation obtainer 141 obtains such a regression equation that the curve graph includes a local minimum value and a local maximum value within a menstrual cycle.
- the degree of the regression equation is three or more. For example, the degree may be preset.
- the regression equation obtainer 141 obtains the regression equation by calculating the coefficient of each term.
- a menstrual cycle can be typically divided into a low-temperature phase and a high-temperature phase.
- the low-temperature phase is the period from the first day of the menstrual cycle to the ovulation date.
- the high-temperature phase is the period from the day after the ovulation date to the last day of the menstrual cycle.
- body temperature during the low-temperature phase is lower than body temperature during the high-temperature phase.
- the regression equation obtainer 141 obtains the equation of the curve graph including a local minimum point and a local maximum point.
- the curve graph only needs to include a local minimum point and a local maximum point that can be identified, that is, the curve graph only needs to show a tendency of the low-temperature phase and the high-temperature phase that can be identified. Thus, a strict similarity between the graph of changes in body temperature data and the curve graph is not required.
- the graph G 4 is a curve graph that approximates the graph G 3 .
- the reference body temperature determiner 142 determines a low-temperature-phase reference body temperature, based on a plurality of days of body temperatures that are identified based on the local minimum point on the curve graph.
- the reference body temperature determiner 142 also determines a high-temperature-phase reference body temperature, based on a plurality of days of body temperatures that are identified based on the local maximum point on the curve graph.
- the low-temperature-phase reference body temperature is a reference body temperature during the low-temperature phase.
- the high-temperature-phase reference body temperature is a reference body temperature during the high-temperature phase.
- the reference body temperature determiner 142 identifies the date corresponding to the local minimum point.
- the reference body temperature determiner 142 may calculate the low-temperature-phase reference body temperature, for example, by averaging the body temperature data within a predetermined number of days before and after the identified date.
- the reference body temperature determiner 142 also identifies the date corresponding to the local maximum point.
- the reference body temperature determiner 142 may calculate the high-temperature-phase reference body temperature, for example, by averaging the body temperature data within a predetermined number of days before and after the identified date.
- the estimator 143 estimates an ovulation date, based on the determined low-temperature-phase reference body temperature and the determined high-temperature-phase reference body temperature. Specifically, the estimator 143 performs the estimation, based on a determination reference body temperature set at a value between the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature and on a plurality of days of body temperature data. For example, the estimator 143 may calculate the determination reference body temperature at the average value of the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature, and estimate the ovulation date, based on this average. This average value is referred to as an average reference body temperature.
- the estimator 143 may determine the determination reference body temperature, for example, to be within a body temperature range lower than the average value of the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature.
- FIG. 5B is a diagram showing an example relationship between the graph G 3 of changes in body temperature data and the estimated ovulation date.
- the estimator 143 may identify, as a reference date, the date on which the body temperature data changes from being lower than the average reference body temperature to being higher than the average reference body temperature. Thus, the timing of the transition from the low-temperature phase to the high-temperature phase can be caught.
- the certain date is the date on which the body temperature data becomes higher than the average reference body temperature.
- the day before the certain date may be, for example, one day before the certain date according to the calendar, or may be the date nearest to the certain date among the days on which body temperature data was successfully obtained before the certain date.
- the estimator 143 determines, for example, the earliest of the plurality of days to be the reference date. Then, the estimator 143 may estimate the day before the identified reference date to be the ovulation date.
- the ovulation date is not limited to the day before the reference date.
- the estimator 143 may estimate the identified reference date to be the ovulation date. If the current time is within the low-temperature phase of the current menstrual cycle, the ovulation date is estimated to be a future date in the current menstrual cycle. If the current time is within the high-temperature phase of the current menstrual cycle, the ovulation date is estimated to be a past date in the current menstrual cycle.
- the system controller 14 estimates an ovulation date, based on a low-temperature-phase reference body temperature and a high-temperature-phase reference body temperature that are determined by using the regression equation of a curve graph that approximates a graph of changes in body temperature.
- the system controller 14 corrects changes in body temperature during previous menstrual cycle(s) by using actual measurements during the current menstrual cycle to determine body temperature data, thus estimating an ovulation date based on changes in body temperature during the current menstrual cycle.
- the body temperature after entering the high-temperature phase in the current menstrual cycle is higher than that during the low-temperature phase.
- information about whether the timing of the transition to the high-temperature phase in the current menstrual cycle is earlier or later than that in the previous menstrual cycle(s) is reflected in the curve graph. Consequently, estimation accuracy is further improved.
- the information processing server 1 may include a plurality of server devices. For example, a server device that obtains information from the user terminals 2 , a server device that estimates an ovulation date and a menstrual date, a server device that provides information to the user terminals 2 , a server device that manages databases, and other server devices may be connected to each other via a LAN or the like.
- FIG. 6 is a flowchart showing an example process of an estimation process in the system controller 14 of the information processing server 1 according to this embodiment.
- the user terminal 2 in response to a user operation, sends an estimation request to the information processing server 1 .
- the estimation request includes the user ID of a user who uses the user terminal 2 .
- the system controller 14 may perform the estimation process when receiving the estimation request.
- the estimator 143 retrieves, from the body temperature DB 12 b , all pairs of measurement dates and actual measurements that correspond to the user ID included in the estimation request, and stores them in the RAM 14 c .
- the estimator 143 also retrieves, from the menstrual date DB 12 c , menstrual dates that correspond to the user ID included in the estimation request, and stores them in the RAM 14 c .
- the estimator 143 identifies the first day of each menstrual cycle, based on the retrieved menstrual dates. Then, as shown in FIG.
- the estimator 143 determines whether there are one or more menstrual cycles during which the user's body temperature was measured four or more times every week, among the three most recent previous menstrual cycles (Step S 1 ). If the estimator 143 determines that there is no menstrual cycle during which the body temperature was measured four or more times every week (NO in Step S 1 ), the process proceeds to Step S 3 . In Step S 3 , the estimator 143 sends a message indicating why it cannot perform the estimation to the user terminal 2 . The user terminal 2 displays the received message on its screen. After Step S 3 , the estimator 143 terminates the estimation process.
- the number of the menstrual cycles may be other than three, and the number of times that the body temperature was measured may be other than four.
- Step S 1 the estimator 143 determines whether there are one or more menstrual cycles during which the body temperature was measured four or more times every week (YES in Step S 1 ). If the estimator 143 determines that there are one or more menstrual cycles during which the body temperature was measured four or more times every week (YES in Step S 1 ), the process proceeds to Step S 2 . In Step S 2 , the estimator 143 determines whether the body temperature was measured four or more times every week during the current menstrual cycle (Step S 2 ). If the estimator 143 determines that the body temperature was not measured four or more times every week (NO in Step S 2 ), the process proceeds to Step S 3 . The number of times that the body temperature was measured may be other than four.
- Step S 4 the estimator 143 performs a basal body temperature method estimation process.
- the basal body temperature method estimation process determines an estimated ovulation date and an estimated menstrual date by a basal body temperature method.
- the basal body temperature method estimation process is described in detail later.
- the estimator 143 sends the determined estimated ovulation date and the determined estimated menstrual date to the user terminal 2 (Step S 5 ).
- the user terminal 2 displays the received estimated ovulation date and the received estimated menstrual date on the screen.
- Step S 5 is a diagram showing an example screen display of an estimation result. As shown in FIG. 7 , an estimated ovulation date D 1 , an estimated menstrual date D 2 , and other information are displayed. After Step S 5 , the estimator 143 terminates the estimation process.
- FIG. 8 is a flowchart showing an example process of the basal body temperature method estimation process in the system controller 14 of the information processing server 1 according to this embodiment.
- the regression equation obtainer 141 selects one or more of the menstrual cycles during which the body temperature was measured four or more times every week, from among the three most recent previous menstrual cycles, as menstrual cycle(s) for determining body temperature data.
- the regression equation obtainer 141 may select the latest menstrual cycle.
- the regression equation obtainer 141 may select the menstrual cycle including the largest number of dates on which the body temperature was measured.
- the regression equation obtainer 141 may obtain the regression equation of a curve graph that approximates a graph of changes in actual measurement, for each previous menstrual cycle.
- the reference body temperature determiner 142 may determine a low-temperature-phase reference body temperature and a high-temperature-phase reference body temperature during each menstrual cycle, and the estimator 143 may estimate an ovulation date and a menstrual date in each menstrual cycle. Then, the regression equation obtainer 141 may select the menstrual cycle including the estimated menstrual date that is nearest to the actual menstrual date. This improves estimation accuracy.
- the regression equation obtainer 141 may select a plurality of menstrual cycles.
- the regression equation obtainer 141 determines body temperature data, based on actual measurements during the selected previous menstrual cycle and actual measurements during the current menstrual cycle (Step S 11 ). Specifically, the regression equation obtainer 141 subtracts the first day of each menstrual cycle from each measurement date in the menstrual cycle to calculate the number of days that have elapsed since the first day. Subsequently, the regression equation obtainer 141 calculates the average of each pair of actual measurements whose numbers of the elapsed days are the same, between the previous and current menstrual cycles, to be body temperature data.
- the regression equation obtainer 141 determines an actual measurement during the other menstrual cycle to be body temperature data.
- the regression equation obtainer 141 associates the body temperature data and the number of elapsed days with each other, and stores them as measurement data in the RAM 14 c.
- the regression equation obtainer 141 may calculate, for example, the average value of actual measurements among the plurality of previous menstrual cycles. Then, the regression equation obtainer 141 may calculate the average value of the calculated average value and an actual measurement during the current menstrual cycle to be body temperature data. The plurality of previous menstrual cycles may have different days. In this case, the regression equation obtainer 141 may simply calculate the average of each pair of actual measurements whose numbers of the elapsed days are the same. Alternatively, the regression equation obtainer 141 may subtract each measurement date in each menstrual cycle from the last day of the menstrual cycle to calculate the number of days until the last day.
- the regression equation obtainer 141 may calculate the average of each pair of actual measurements whose numbers of days until the corresponding last day are the same. There is a small variation in the number of days between high-temperature phases as compared with a variation in the number of days between low-temperature phases. Thus, the regression equation obtainer 141 improves estimation accuracy by coordinating the high-temperature phases with each other between the menstrual cycles. In this case, for example, for the period between thirteen days before the last day of a menstrual cycle (fourteen days before the first day of the next menstrual cycle) and the last day of the menstrual cycle, the regression equation obtainer 141 may calculate the average of each pair of actual measurements whose numbers of days until the corresponding last day are the same.
- the regression equation obtainer 141 may adjust the periods to each other between the plurality of menstrual cycles. For example, assume that there are a menstrual cycle A of twenty days and a menstrual cycle B of thirty days. In this case, for the last fourteen days of each menstrual cycle, the regression equation obtainer 141 calculates the average of each pair of actual measurements whose numbers of days until the corresponding last day are the same. Then, six days remain in the menstrual cycle A, and sixteen days remain in the menstrual cycle B. In this case, the regression equation obtainer 141 multiplies the number of days between the first day and each day of the first six days of the menstrual cycle A by sixteen sixths, and rounds off the calculations. Then, the regression equation obtainer 141 calculates the average of each pair of actual measurements whose numbers of days are the same, between the calculated number of days for the menstrual cycle A and the number of days since the first day of the menstrual cycle B.
- the regression equation obtainer 141 may calculate the average of each pair of actual measurements whose numbers of days since the first day of the corresponding menstrual cycle are the same, for example, within the number of days in the previous menstrual cycle. Then, the regression equation obtainer 141 may determine body temperature data corresponding to the number of days in the previous menstrual cycle. Thus, the regression equation obtainer 141 obtains the average of changes in body temperature during the short low-temperature phase and changes in body temperature during the long low-temperature phase.
- the regression equation obtainer 141 calculates each coefficient of the regression equation of a curve graph that approximates a graph of changes in the body temperature data, using regression analysis (Step S 12 ).
- the regression equation obtainer 141 may use the least-squares method.
- the degree of the regression equation is predetermined.
- the reference body temperature determiner 142 identifies a local minimum point and a local maximum point on the curve graph defined by the regression equation, and identifies the date corresponding to the local minimum point and the date corresponding to the local maximum point in the form of the number of days since the first day of the menstrual cycle (Step S 13 ).
- the reference body temperature determiner 142 may identify, for example, the maximum of the plurality of local maximum points.
- the reference body temperature determiner 142 may identify, for example, the local minimum point that appears before and nearest to the date corresponding to the identified local maximum point, from among the plurality of local minimum points.
- the reference body temperature determiner 142 calculates the average of the body temperature data for a predetermined number of days before and after the date corresponding to the local minimum point to be a low-temperature-phase reference body temperature (Step S 14 ). Then, the reference body temperature determiner 142 calculates the average of the body temperature data for the predetermined number of days before and after the date corresponding to the local maximum point to be a high-temperature-phase reference body temperature (Step S 15 ).
- the predetermined number of days may be, for example, three days.
- the estimator 143 calculates the average value of the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature to be an average reference body temperature (Step S 16 ). Subsequently, the estimator 143 identifies a reference date on which the body temperature data becomes higher than the average reference body temperature (Step S 17 ). For example, for each day from the first day to the last day of the menstrual cycle, the estimator 143 determines whether the body temperature data is higher than the average reference body temperature.
- the estimator 143 calculates the reference date on which the body temperature data becomes higher than the average reference body temperature, by adding the number of the elapsed days corresponding to the date on which the body temperature data is first determined to be higher than the average reference body temperature to the date of the first day of the current menstrual cycle.
- the estimator 143 subtracts 1 from the identified reference date to calculate an estimated ovulation date (Step S 18 ). Based on the estimated ovulation date, the estimator 143 estimates a menstrual date (Step S 19 ). For example, the estimator 143 may add the number of days in the high-temperature phase to the estimated ovulation date to calculate the estimated menstrual date. In this case, the estimator 143 may estimate the menstrual date, for example, by the rhythm method. Specifically, the estimator 143 adds fourteen days to the estimated ovulation date to calculate the estimated menstrual date.
- the estimator 143 may estimate an ovulation date in each previous menstrual cycle, for example, by the above-described method, and calculate the number of days from the ovulation date to the actual menstrual date to be the number of days in the high-temperature phase of the menstrual cycle. Then, the estimator 143 may calculate the average value of the calculated numbers of days and then add the average value to the estimated ovulation date, to calculate the estimated menstrual date. After Step S 19 , the estimator 143 terminates the basal body temperature method estimation process.
- the system controller 14 obtains the regression equation of a function of date that approximates the relationship between body temperature data, which is obtained based on actual measurements during at least one menstrual cycle, and dates, and that has a local minimum value and a local maximum value.
- the system controller 14 also determines a low-temperature-phase reference body temperature, based on a plurality of days of body temperatures that are identified based on the date corresponding to a local minimum value in the function defined by the regression equation, and determines a high-temperature-phase reference body temperature, based on a plurality of days of body temperatures that are identified based on the date corresponding to a local maximum value in the function.
- the system controller 14 estimates an ovulation date in the current menstrual cycle, based on a determination reference body temperature set at a value between the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature and on measurement data.
- a determination reference body temperature set at a value between the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature and on measurement data.
- one menstrual cycle includes a low-temperature phase and a high-temperature phase, and an ovulation date comes at the transition from the low-temperature phase to the high-temperature phase.
- an ovulation date comes at the transition from the low-temperature phase to the high-temperature phase.
- the system controller 14 derives a function having a local minimum value and a local maximum value from measurement data (a graph of changes in body temperature data).
- an ovulation date is estimated from less menstrual cycles body temperatures.
- the system controller 14 may identify a date on which body temperature becomes higher than the determination reference body temperature, among the dates included in the measurement data, as a reference date, and estimate an ovulation date, based on the reference date. This allows an ovulation date to be correctly estimated.
- the system controller 14 may obtain the regression equation of a function that approximates the relationship between body temperature data and dates, which is obtained based on actual measurements during at least one previous menstrual cycle and on actual measurements during the current menstrual cycle. This allows changes in actual measurement during the current menstrual cycle to be reflected in the function. Consequently, estimation accuracy is improved.
- the configuration of the information processing system S, the configuration of the information processing server 1 , and the functional blocks of the system controller 14 are the same as those in the first embodiment.
- the system controller 14 estimates an ovulation date using a graph of changes in body temperature data.
- the system controller 14 estimates an ovulation date by using the regression equation of a curve graph.
- FIG. 9 is a diagram showing an example relationship between the curve graph G 4 and an estimated ovulation date.
- the estimator 143 may identify on which date the body temperature calculated by the regression equation of the curve graph becomes higher than the average value of a low-temperature-phase reference body temperature and a high-temperature-phase reference body temperature. Then, the estimator 143 may estimate the day before the identified date to be the ovulation date.
- the system controller 14 may calculate a weighted average of each actual measurement during a previous menstrual cycle and the corresponding actual measurement during the current menstrual cycle. In this case, the system controller 14 sets the weighting factor of the actual measurements during the current menstrual cycle to a value higher than the weighting factor of the actual measurements during the previous menstrual cycle.
- the length of the low-temperature phase of the current menstrual cycle has great effect on the next menstrual date and the ovulation date in the current menstrual cycle, as compared with the low-temperature phase of the previous menstrual cycle. Assigning a higher weight to the actual measurements during the current menstrual cycle improves estimation accuracy.
- each weighting factor may be prestored in the storage unit 12 .
- the weighting factor of the actual measurements during the current menstrual may be 0.7 and the weighting factor of the actual measurements during the previous menstrual cycle may be 0.3.
- FIG. 10 is a flowchart showing an example process of the basal body temperature method estimation process in the system controller 14 of the information processing server 1 according to this embodiment.
- the same steps as in FIG. 8 are denoted by the same reference signs.
- the regression equation obtainer 141 assigns a higher weighting factor to actual measurements during the current menstrual cycle than to actual measurements during a previous menstrual cycle (Step S 21 ).
- the regression equation obtainer 141 retrieves each preset weighting factor from the storage unit 12 .
- Step S 22 the regression equation obtainer 141 calculates a weighted average of each actual measurement during the previous menstrual cycle and the corresponding actual measurement during the current menstrual cycle, and determines the weighted averages to be body temperature data (Step S 22 ). Except for calculating the weighted averages, the details of Step S 22 are the same as those of Step S 11 shown in FIG. 8 . Subsequently, Steps S 12 to S 16 are performed.
- the estimator 143 identifies a reference date on which the body temperature calculated by the regression equation becomes higher than the average reference body temperature (Step S 23 ). Specifically, for each day from the first day to the last day of the menstrual cycle, the estimator 143 calculates a body temperature given by the regression equation, based on each coefficient determined in Step S 12 . Next, for each day from the first day to the last day of the menstrual cycle, the estimator 143 determines whether the calculated body temperature is higher than the average reference body temperature.
- the estimator 143 calculates the reference date by adding the number of the elapsed days corresponding to the date on which the calculated body temperature is first determined to be higher than the average reference body temperature to the date of the first day of the current menstrual cycle. Subsequently, Steps S 18 and S 19 are performed.
- the system controller 14 estimates an ovulation date, based on the date on which the body temperature calculated by using the regression equation becomes higher than the determination reference body temperature. Consequently, decrease in estimation accuracy due to the effect of noise in actual measurements is prevented.
- the system controller 14 may assign a higher weight to actual measurements during the current menstrual cycle than to actual measurements during a previous menstrual cycle, calculate a weighted average of each actual measurement during the previous menstrual cycle and the corresponding actual measurement during the current menstrual cycle, and obtain the regression equation of a function that approximates the relationship between body temperature data including the weighted averages and dates. This allows changes in body temperature during the current menstrual cycle to be further reflected in the function. Consequently, estimation accuracy is improved.
- the following describes a third embodiment with reference to FIGS. 11 to 13B .
- the configuration of the information processing system S and the configuration of the information processing server 1 are the same as those in the first embodiment.
- the system controller 14 selects the degree of a regression equation used to estimate an ovulation date, from among a plurality of degrees. Specifically, the system controller 14 estimates a menstrual date in a previous menstrual cycle by using each of the regression equations of the plurality of degrees. Then, the system controller 14 selects the degree that minimizes the difference between the estimated menstrual date and the actual menstrual date. That is, the system controller 14 uses the degree that maximizes estimation accuracy of a previous menstrual date.
- FIG. 11 is a diagram showing example functional blocks of the system controller 14 according to this embodiment.
- the system controller 14 functions as, for example, the regression equation obtainer 141 , the reference body temperature determiner 142 , the estimator 143 , a second regression equation obtainer 144 , a second reference body temperature determiner 145 , a second estimator 146 , and a degree determiner 147 .
- the second regression equation obtainer 144 is an example of second obtaining means of the present invention.
- the second reference body temperature determiner 145 is an example of second determining means of the present invention.
- the second estimator 146 is an example of second estimating means of the present invention.
- the degree determiner 147 is an example of identifying means of the present invention.
- the second regression equation obtainer 144 obtains curve graph regression equations that each approximate a graph of changes in actual measurement during at least one previous menstrual cycle.
- the second regression equation obtainer 144 differs from the regression equation obtainer 141 in that it uses actual measurements during the previous menstrual cycle(s) and no body temperature data, that is, in that it uses no actual measurements during the current menstrual cycle.
- the second regression equation obtainer 144 is the same as the regression equation obtainer 141 .
- the regression equation obtainer 141 may double as the second regression equation obtainer 144 .
- the second reference body temperature determiner 145 determines a low-temperature-phase reference body temperature and a high-temperature-phase reference body temperature during a previous menstrual cycle, based on the regression equation.
- the second reference body temperature determiner 145 determines them in the same manner as the reference body temperature determiner 142 .
- the reference body temperature determiner 142 may double as the second reference body temperature determiner 145 .
- the second estimator 146 estimates an ovulation date and a menstrual date, based on the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature that are determined by the second reference body temperature determiner 145 .
- the second estimator 146 estimates them in the same manner as the estimator 143 .
- the estimator 143 may double as the second estimator 146 .
- the degree determiner 147 identifies the regression equation that minimizes the difference between the menstrual date estimated by the second estimator 146 and a previous actual menstrual date, from among the regression equations obtained by the second regression equation obtainer 144 . Then, the degree determiner 147 selects the degree of the identified regression equation as the degree for estimating an ovulation date in the current menstrual cycle.
- FIG. 12 is a flowchart showing an example process of the estimation process in the system controller 14 of the information processing server 1 according to this embodiment.
- the same steps as in FIG. 6 are denoted by the same reference signs.
- the estimator 143 determines in Step S 2 that the body temperature was measured four or more times every week during the current menstrual cycle (YES in Step S 2 )
- the process proceeds to Step S 31 .
- the system controller 14 performs a degree determination process.
- the degree determination process determines the degree of a regression equation.
- the degree determination process is described in detail below.
- the estimator 143 performs Steps S 4 and S 5 , and then terminates the estimation process.
- FIG. 13A is a flowchart showing an example process of the degree determination process in the system controller 14 of the information processing server 1 according to this embodiment.
- the second regression equation obtainer 144 selects one or more of the menstrual cycles during which the body temperature was measured four or more times every week, from among the three most recent previous menstrual cycles. The menstrual cycles) are selected in the same manner as in the basal body temperature method estimation process.
- the degree determiner 147 set a degree n to 3 (Step S 41 ).
- the second regression equation obtainer 144 calculates each coefficient of the n-th degree regression equation of a curve graph that approximates a graph of changes in actual measurement during the selected menstrual cycle(s) (Step S 42 ).
- the second reference body temperature determiner 145 identifies the date corresponding to a local minimum point on the curve graph defined by the n-th degree regression equation and the date corresponding to a local maximum point on the curve graph (Step S 43 ).
- the second reference body temperature determiner 145 calculates the average of the actual measurements for a predetermined number of days before and after the date corresponding to the local minimum point to be a low-temperature-phase reference body temperature (Step S 44 ).
- the second reference body temperature determiner 145 calculates the average of the actual measurements for a predetermined number of days before and after the date corresponding to the local maximum point to be a high-temperature-phase reference body temperature (Step S 45 ).
- the second estimator 146 calculates the average value of the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature to be an average reference body temperature (Step S 46 ). Then, the second estimator 146 identifies a date on which the actual measurement becomes higher than the average reference body temperature (Step S 47 ). Subsequently, the second estimator 146 subtracts 1 from the identified date to calculate an estimated ovulation date (Step S 48 ). Based on the estimated ovulation date, the second estimator 146 estimates a menstrual date (Step S 49 ).
- the degree determiner 147 calculates the difference between the menstrual date estimated in Step S 49 and an actual menstrual date in the selected menstrual cycle(s) to be the difference in the number of days that corresponds to the degree n (Step S 50 ). Then, the degree determiner 147 determines whether the degree n is less than a predetermined degree maximum value (Step S 51 ). If the degree determiner 147 determines that the degree n is less than the degree maximum value (YES in Step S 51 ), the process proceeds to Step S 52 . In Step S 52 , the degree determiner 147 adds 1 to the degree n. After that, the estimator 147 causes the process to proceed to Step S 42 .
- Step S 53 the degree determiner 147 identifies which of the degrees from 3 to the degree maximum value minimizes the difference in the number of days. Then, the degree determiner 147 sets a determined degree N to the identified degree. After Step S 53 , the degree determiner 147 terminates the degree determination process.
- FIG. 13B is a flowchart showing an example process of the basal body temperature method estimation process in the system controller 14 of the information processing server 1 according to this embodiment.
- the same steps as in FIG. 8 are denoted by the same reference signs.
- the regression equation obtainer 141 calculates each coefficient of the N-th degree regression equation of a curve graph that approximates a graph of changes in the body temperature data (Step S 54 ). Then, Steps S 13 to S 19 are performed.
- the system controller 14 obtains a plurality of regression equations of mutually different degrees. For each of the regression equations, the system controller 14 determines a low-temperature-phase reference body temperature and a high-temperature-phase reference body temperature. For each of the regression equations, the system controller 14 also estimates a menstrual date in at least one previous menstrual cycle, based on a body temperature set at a value between the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature and on a plurality of days of actual measurements. The system controller 14 also identifies the degree of the regression equation that minimizes the difference between the estimated menstrual date and the actual menstrual date, from among the plurality of regression equations. Then, the system controller 14 obtains the regression equation of the identified degree for estimating an ovulation date in the current menstrual cycle. Consequently, estimation accuracy is improved.
- the configuration of the information processing system S and the configuration of the information processing server 1 are the same as those in the first embodiment.
- the system controller 14 determines the reliability of actual measurements during the current menstrual cycle. If the reliability is low, the system controller 14 does not use the actual measurements during the current menstrual cycle, to estimate an ovulation date. In this case, the system controller 14 estimates an ovulation date, based on actual measurements during previous menstrual cycle(s) For example, the system controller 14 may calculate the number of days in a previous menstrual cycle using menstrual dates in previous menstrual cycles, and perform the estimation based on the calculated number of days. Alternatively, the system controller 14 may obtain the regression equation of a curve graph by using the actual measurements during the previous menstrual cycle(s), and perform the estimation based on the regression equation.
- FIG. 14 is a diagram showing example functional blocks of the system controller 14 according to this embodiment.
- the system controller 14 functions as, for example, the regression equation obtainer 141 , the reference body temperature determiner 142 , the estimator 143 , the second regression equation obtainer 144 , the second reference body temperature determiner 145 , the second estimator 146 , the degree determiner 147 , and a reliability determiner 148 .
- the reliability determiner 148 is an example of determination means of the present invention.
- the reliability determiner 148 determines the reliability of actual measurements during the current menstrual cycle, based on actual measurement during previous menstrual cycle(s). For example, the reliability determiner 148 may use the number of days in the low-temperature phase of a previous menstrual cycle that is identified based on an estimated ovulation date in the previous menstrual cycle, a low-temperature-phase reference body temperature, and a low-temperature-phase reference body temperature. Specifically, if the actual measurements during the low-temperature phase of the current menstrual cycle exceed the average value of the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature for at least a predetermined number of consecutive days, the reliability determiner 148 may determine that they are unreliable. In this case, for example, the user's physical condition may have changed during the current menstrual cycle.
- FIG. 15 is a flowchart showing an example process of the estimation process in the system controller 14 of the information processing server 1 according to this embodiment.
- the estimator 143 performs a menstrual cycle method estimation process (Step S 32 ).
- the menstrual cycle method estimation process estimates an ovulation date and a menstrual date, based on previous menstrual cycle(s).
- the ovulation date and the menstrual date that are estimated in the menstrual cycle method estimation process are respectively referred to as a second estimated ovulation date and a second estimated menstrual date.
- Steps S 1 and S 2 are performed.
- Step S 3 if the estimator 143 determines that the body temperature was measured four or more times every week (YES in Step S 2 ), the process proceeds to Step S 31 .
- the estimator 143 performs the basal body temperature method estimation process, and then the estimator 143 performs the basal body temperature method estimation process (Step S 4 ).
- the reliability determiner 148 performs a reliability determination process (Step S 33 ).
- the reliability determination process determines the reliability of actual measurements during the current menstrual cycle. Then, a reliability flag is set based on the determination result. The reliability determination process is described in detail later.
- the estimator 143 determines whether the reliability flag is set to “low” (Step S 34 ). If the estimator 143 determines that the reliability flag is not set to “low” (NO in Step S 34 ), the process proceeds to Step S 5 .
- Step S 34 the process proceeds to Step S 35 .
- Step S 35 the reliability determiner 148 determines whether the difference between the menstrual date estimated in the basal body temperature method estimation process and the second estimated menstrual date estimated in the menstrual cycle method estimation process is greater than or equal to a predetermined number of days. If the reliability determiner 148 determines that the difference is not greater than or equal to the predetermined number of days (NO in Step S 35 ), the process proceeds to Step S 5 .
- Step S 36 the estimator 143 sends the second estimated ovulation date and the second estimated menstrual date to the user terminal 2 .
- the user terminal 2 displays the second estimated ovulation date and the second estimated menstrual, which are received from the information processing server 1 , on the screen.
- the estimator 143 may send the ovulation date and the menstrual date that are estimated based on the N-th degree regression equation obtained in the degree determination process.
- the degree determination process uses no actual measurements during the current menstrual cycle, to estimate the ovulation date and the menstrual date.
- the estimator 143 terminates the estimation process.
- the reliability determiner 148 may skip the determination of Step S 35 , and the estimator 143 may send the second estimated ovulation date and the second estimated menstrual date.
- FIG. 16A is a flowchart showing an example process of the menstrual cycle method estimation process in the system controller 14 of the information processing server 1 according to this embodiment.
- the estimator 143 calculates the number of days in a previous menstrual cycle, based on menstrual dates retrieved from the menstrual date DB 12 c (Step S 61 ). At this time, the estimator 143 may calculate, for example, the number of days in the latest menstrual cycle. Alternatively, the estimator 143 may calculate, for example, the average value of the numbers of days in a plurality of menstrual cycles.
- the estimator 143 adds the calculated number of days in the menstrual cycle to the date of the first day of the current menstrual cycle to calculate a second estimated menstrual date (Step S 62 ). Then, the estimator 143 subtracts fourteen days from the second estimated menstrual date to calculate a second estimated ovulation date (Step S 63 ). After Step S 63 , the estimator 143 terminates the menstrual cycle method estimation process.
- FIG. 16B is a flowchart showing an example process of the reliability determination process in the system controller 14 of the information processing server 1 according to this embodiment.
- the reliability determiner 148 obtains the ovulation date in the previous menstrual cycle that is estimated based on the N-th degree regression equation obtained in the degree determination process. Then, the reliability determiner 148 subtracts the date of the first day of the menstrual cycle from the obtained ovulation date to calculate the number of days in the low-temperature phase (Step S 71 ). Subsequently, the reliability determiner 148 subtracts a preset number of days from the number of days in the low-temperature phase to calculate the number of days in a determination period (Step S 72 ).
- the reliability determiner 148 obtains the average reference body temperature determined based on the N-th degree regression equation obtained in the degree determination process. After that, the reliability determiner 148 obtains actual measurements for the number of days corresponding to the number of days in the determination period from the first day of the current menstrual cycle. Then, the reliability determiner 148 determines whether the actual measurements exceed the average reference body temperature for a predetermined number of consecutive days during the determination period from the first day of the current menstrual cycle (Step S 73 ).
- Step S 74 the reliability determiner 148 sets the reliability flag to “not low”.
- Step S 75 the reliability determiner 148 sets the reliability flag to “low”.
- the system controller 14 determines whether the reliability of actual measurements during the current menstrual cycle meets a predetermined requirement, based on actual measurements during at least one previous menstrual cycle. If the reliability does not meet the predetermined requirement, the system controller 14 obtains a regression equation based on information about the at least one previous menstrual cycle, without using either a low-temperature-phase reference body temperature or a high-temperature-phase reference body temperature that is determined based on the actual measurements during the current menstrual cycle. Consequently, decrease in estimation accuracy due to using actual measurements during the current menstrual cycle is prevented.
- the degree of the regression equation of the curve graph may be preset. In this case, the system controller 14 may skip the degree determination process.
- the basal body temperature method estimation process may be the same as that in the first or second embodiment.
- the system controller 14 may obtain a regression equation of the preset degree as the regression equation of a curve graph that approximates a graph of changes in actual measurement during the previous menstrual cycle(s), and calculate, for example, the number of days in the low-temperature phase, a low-temperature-phase reference body temperature, and a high-temperature-phase reference body temperature. Then, the system controller 14 may perform the reliability determination process, based on the calculated information.
- the configuration of the information processing system S, the configuration of the information processing server 1 , and the functional blocks of the system controller 14 are the same as those in the fourth embodiment. Also in this embodiment, the system controller 14 determines the reliability of actual measurements during the current menstrual cycle. For example, if no actual measurement has yet exceeded the average of the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature even a predetermined number of days before the menstrual date estimated in the menstrual cycle method estimation process, the reliability determiner 148 may determine that the reliability is low. In this case, the current menstrual cycle is likely to end before a high-temperature phase appears.
- FIG. 17 is a flowchart showing an example process of the reliability determination process in the system controller 14 of the information processing server 1 according to this embodiment.
- the estimation process, the menstrual cycle method estimation process, and the basal body temperature method estimation process are the same as those in the fourth embodiment.
- the reliability determiner 148 subtracts a preset number of days from the number of days in the menstrual cycle, which is calculated in the menstrual cycle method estimation process, to determine a comparison number of days (Step S 81 ). Subsequently, the reliability determiner 148 subtracts the date of the first day of the menstrual cycle from today's date to calculate the number of elapsed days (Step S 82 ).
- Step S 83 the reliability determiner 148 determines whether the number of elapsed days is greater than or equal to the comparison number of days. If the reliability determiner 148 determines that the number of elapsed days is not greater than or equal to the comparison number of days (NO in Step S 83 ), the process proceeds to Step S 85 .
- Step S 84 the reliability determiner 148 obtains the average reference body temperature determined based on the N-th degree regression equation obtained in the degree determination process. The reliability determiner 148 also determines whether all of the actual measurements after the comparison number of days has elapsed since the first day of the current menstrual cycle, among the actual measurements during the current menstrual cycle, are lower than the average reference body temperature.
- Step S 85 the reliability determiner 148 sets the reliability flag to “not low”.
- Step S 86 the reliability determiner 148 sets the reliability flag to “low”. After Step S 85 or S 86 , the reliability determiner 148 terminates the reliability determination process.
- the system controller 14 may determine the reliability, for example, by combining the reliability determination process in the fourth embodiment and the reliability determination process in the fifth embodiment.
- the configuration of the information processing system S, the configuration of the information processing server 1 , and the functional blocks of the system controller 14 are the same as those in the first embodiment.
- the system controller 14 determines whether previous menstrual cycles were stable. If the previous menstrual cycles were stable, the system controller 14 estimates an ovulation date, based on the numbers of days in the previous menstrual cycles. Specifically, when the difference between the number of days in each of a plurality of previous menstrual cycles and the average value of the numbers of days in the plurality of previous menstrual cycles is less than or equal to a predetermined value, the estimator 143 estimates an ovulation date, based on the average value. When the menstrual cycles were stable, the system controller 14 does not need to perform the estimation by the basal body temperature method.
- the estimator 143 may estimate an ovulation date by the basal body temperature method, without using the average number of days in the menstrual cycles. In this case, the preceding menstrual cycle is irregular. In this case, it is worth performing the estimation by the basal body temperature method.
- an estimated menstrual date DB may be further created.
- the estimated menstrual date DB stores an ovulation date and a menstrual date that are estimated based on the average number of days in the menstrual cycles.
- the estimated menstrual date DB stores a user ID, the date of the first day of a menstrual cycle, a second estimated ovulation date, and a second estimated menstrual date in association with each other.
- the user ID indicates a user whose ovulation date and menstrual date were estimated.
- the date of the first day indicates the first day of the menstrual cycle for which the estimation process was performed.
- the second estimated ovulation date and the second estimated menstrual date are the ovulation date and the menstrual date that were estimated.
- FIG. 18 is a flowchart showing an example process of the estimation process in the system controller 14 of the information processing server 1 according to this embodiment.
- the same steps as in FIG. 6 are denoted by the same reference signs.
- the estimator 143 determines in Step S 2 that the body temperature was measured four or more times every week during the current menstrual cycle (YES in Step S 2 )
- the process proceeds to Step S 91 .
- the estimator 143 determines whether the second estimated ovulation date and the second estimated menstrual date that correspond to the user ID included in the estimation request and to the date of the first day of the current menstrual cycle are stored in the estimated menstrual date DB.
- Step S 92 the estimator 143 sends, to the user terminal 2 , the second estimated ovulation date and the second estimated menstrual date that correspond to the user ID included in the request and to the date of the first day of the current menstrual cycle.
- the fact that the second estimated ovulation date and the second estimated menstrual date are stored means that the menstrual cycle has already met requirements for estimating an ovulation date and a menstrual date based on the average of a plurality of previous menstrual cycles.
- Step S 92 the estimator 143 terminates the estimation process.
- Step S 91 the estimator 143 determines that the second estimated ovulation date and the second estimated menstrual date are not stored (NO in Step S 91 ).
- Step S 93 the estimator 143 determines whether the second estimated ovulation date and the second estimated menstrual date that correspond to the user ID included in the estimation request and to the date of the first day of the preceding menstrual cycle are stored in the estimated menstrual date DB. If the estimator 143 determines that the second estimated ovulation date and the second estimated menstrual date are not stored (NO in Step S 93 ), the process proceeds to Step S 95 .
- Step S 94 the estimator 143 determines whether the difference between the second estimated menstrual date corresponding to the user ID included in the estimation request and to the date of the first day of the preceding menstrual cycle and the actual menstrual date is less than or equal to a preset threshold number of days. If the reliability determiner 143 determines that the difference is not less than or equal to the threshold number of days (NO in Step S 94 ), the process proceeds to Step S 4 .
- Step S 95 the estimator 143 determines whether there are a predetermined number of previous menstrual cycles or more, based on the menstrual dates retrieved from the menstrual date DB 12 c . If the reliability determiner 143 determines that there are not the predetermined number of previous menstrual cycles or more (NO in Step S 95 ), the process proceeds to Step S 4 .
- Step S 95 the process proceeds to Step S 96 .
- the estimator 143 calculates the average number of days in the plurality of previous menstrual cycles, based on the menstrual dates retrieved from the menstrual date DB 12 c . Subsequently, based on the numbers of days in the plurality of previous menstrual cycles and the average number of days, the estimator 143 calculates the variance of the numbers of days in the menstrual cycles (Step S 97 ). This variance is the magnitude of the difference between the numbers of days in the plurality of previous menstrual cycles and the average number of days.
- Step S 98 the estimator 143 determines whether the calculated variance is less than or equal to a preset threshold value. If the reliability determiner 143 determines that the variance is not less than or equal to the threshold value (NO in Step S 98 ), the process proceeds to Step S 4 .
- Step S 99 the estimator 143 performs the menstrual cycle method estimation process. Subsequently, the estimator 143 sends the second estimated ovulation date and the second estimated menstrual date, which are estimated in the menstrual cycle method estimation process, to the user terminal 2 (Step S 100 ). After Step S 100 , the estimator 143 terminates the estimation process.
- FIG. 19 is a flowchart showing an example process of the menstrual cycle method estimation process in the system controller 14 of the information processing server 1 according to this embodiment.
- the estimator 143 adds the calculated average number of days in the menstrual cycles calculated in the estimation process to the date of the first day of the current menstrual cycle to calculate a second estimated menstrual date (Step S 101 ). Subsequently, the estimator 143 subtracts fourteen days from the second estimated menstrual date to calculate a second estimated ovulation date (Step S 102 ).
- the estimator 143 stores the second estimated ovulation date and the second estimated menstrual date in the estimated menstrual date DB, in association with the user ID included in the estimation request and with the date of the first day of the current menstrual cycle (Step S 103 ). After Step S 103 , the estimator 143 terminates the menstrual cycle method estimation process.
- the system controller 14 estimates an ovulation date and the next menstrual date based on the average of the plurality of menstrual cycles, without using either a low-temperature-phase reference body temperature or a low-temperature-phase reference body temperature.
- the information processing server 1 improves estimation accuracy, even without using the regression equation of a function that approximates the relationship between body temperature data and dates.
- the system controller 14 may estimate an ovulation date in the current menstrual cycle, based on a low-temperature-phase reference body temperature and a high-temperature-phase reference body temperature that are determined by using the regression equation of a function that approximates actual measurements during at least one previous menstrual cycle and actual measurements during the current menstrual cycle.
- a low-temperature-phase reference body temperature and a high-temperature-phase reference body temperature that are determined by using the regression equation of a function that approximates actual measurements during at least one previous menstrual cycle and actual measurements during the current menstrual cycle.
- the system controller 14 may determine whether to estimate an ovulation date by the basal body temperature method, for example, by combining at least one of the reliability determination processes in the fourth and fifth embodiments with the determination process in this embodiment.
- the configuration of the information processing system S, the configuration of the information processing server 1 , and the functional blocks of the system controller 14 are the same as those in the first embodiment.
- a reference date is defined as a date on which the body temperature data becomes higher than a determination reference body temperature. Thus, for any reason, there may be a plurality of candidates for the reference date.
- FIG. 20 is a diagram showing an example relationship between a graph of changes in body temperature data, a curve graph that approximates the graph of the changes, and candidates for a reference date.
- the graph G 5 shows changes in body temperature data
- the graph G 6 is a curve graph that approximates the graph G 5 .
- the date that is C1 days after a menstrual date and the date that is C2 days after the menstrual date are each a candidate for the reference date.
- the system controller 14 determines one of the plurality of candidates to be the reference date, based on a predetermined criterion.
- a candidate for the reference date is referred to as a candidate reference date.
- the system controller 14 selects candidate reference dates from the period from a predetermined number of days after (e.g., three days after) the date corresponding to a local minimum point on the curve graph to a predetermined number of days before (e.g., three days before) the date corresponding to a local maximum point on the curve graph.
- the reason is, for example, that the transition from a low-temperature phase to a high-temperature phase is less likely to occur between the date corresponding to the local minimum point and the predetermined number of days after then, and between the date corresponding to the local maximum point and the predetermined number of days before then.
- the period from which candidate reference dates are selected is referred to as a candidate period.
- the system controller 14 may determine the latest of a plurality of candidate reference dates to be the reference date. In this case, a date on which the body temperature exceeded the determination reference body temperature because of a fever during the low-temperature phase is excluded from the reference date. In the example of FIG. 20 , the day that is C2 days after the menstrual date is determined to be the reference date.
- the system controller 14 may determine the earliest of the candidate reference dates that meet the following criterion to be the reference date.
- the criterion is both that all the body temperature data for a predetermined number of consecutive days (e.g., two days) starting forward from the day after a candidate reference date are higher than the determination reference body temperature, and that all the body temperature data for a predetermined number of consecutive days (e.g., two days) starting backward from two days before the candidate reference date are lower than the determination reference body temperature.
- the consecutive days may be, for example, consecutive days according to the calendar or consecutive days in ascending order of dates on which measurement data was obtained.
- a date on which the body temperature exceeded the determination reference body temperature because of a fever during the low-temperature phase is excluded from the reference date.
- a date on which the body temperature exceeded the determination reference body temperature after the body temperature became lower than the determination reference body temperature, for example, because of an error in measurement during the high-temperature phase is also excluded from the reference date.
- the day that is C2 days after the menstrual date is determined to be the reference date.
- FIG. 21 is a flowchart showing an example process of the basal body temperature method estimation process in the system controller 14 of the information processing server 1 according to this embodiment.
- the same steps as in FIG. 8 are denoted by the same reference signs.
- the estimator 143 determines a candidate period (Step S 111 ). Specifically, the estimator 143 adds a certain number of days prestored in the storage unit 12 to the date corresponding to the local minimum point to calculate the first day of the candidate period. The estimator 143 also subtracts a certain number of days prestored in the storage unit 12 from the date corresponding to the local maximum point to calculate the last day of the candidate period.
- the estimator 143 identifies candidate reference date(s) on which the body temperature data becomes higher than the average reference body temperature, within the candidate period (Step S 112 ). Specifically, the estimator 143 performs the following process using each of the dates included in the candidate period as a date of interest. The estimator 143 identifies, as candidate reference dates, all the dates of interest on which the body temperature data is higher than the average reference body temperature and whose preceding day's body temperature data is lower than the average reference body temperature.
- Step S 113 the estimator 143 determines whether the number of the identified candidate reference dates is greater than one (Step S 113 ). If the estimator 143 determines that the number of the identified candidate reference dates is not greater than one (NO in Step S 113 ), the process proceeds to Step S 114 . In Step S 114 , the estimator 143 determines the identified candidate reference date to be a reference date (Step S 114 ). After that, the estimator 143 performs Steps S 18 and S 19 .
- Step S 115 the estimator 143 determines a reference date from among the plurality of candidate reference dates, based on the predetermined criterion. For example, the estimator 143 determines the latest of the plurality of candidate reference dates to be the reference date. Alternatively, for example, the estimator 143 performs the following determination in ascending order of the candidate reference dates. Specifically, the estimator 143 determines whether all the body temperature data between the day after a candidate reference date and a certain number of days, prestored in the storage unit 12 , after then are higher than the average reference body temperature.
- the estimator 143 determines whether all the body temperature data between two days before the candidate reference date and a certain number of days, prestored in the storage unit 12 , before then are lower than the average reference body temperature. The estimator 143 determines the candidate reference date for which all the body temperature data are first determined to be lower than the average reference body temperature to be the reference date. After determining the reference date, the estimator 143 performs Steps S 18 and S 19 .
- one of the candidate reference dates is determined to be a reference date, based on a predetermined criterion.
- a reference date is properly identified even if measurement data includes any noise. Consequently, estimation accuracy is improved.
- the system controller 14 may estimate an ovulation date, based on a date on which the body temperature calculated by using the regression equation becomes higher than the average of the low-temperature-phase reference body temperature and the high-temperature-phase reference body temperature.
- the system controller 14 may calculate a weighted average of each actual measurement during previous menstrual cycle(s) and the corresponding actual measurement during the current menstrual cycle, and obtain the regression equation of a curve graph that approximates the a graph of changes including the weighted averages.
- an information processing device is a server device in a client-server system.
- the information processing device according to the present invention may be an information processing device other than the server device.
- the information processing device according to the present invention may be the user terminal 2 .
- the information processing device may obtain actual measurements of a user who uses the information processing device and estimate an ovulation date of the user.
Landscapes
- Health & Medical Sciences (AREA)
- Life Sciences & Earth Sciences (AREA)
- Medical Informatics (AREA)
- Public Health (AREA)
- Engineering & Computer Science (AREA)
- General Health & Medical Sciences (AREA)
- Surgery (AREA)
- Molecular Biology (AREA)
- Heart & Thoracic Surgery (AREA)
- Animal Behavior & Ethology (AREA)
- Biomedical Technology (AREA)
- Pathology (AREA)
- Veterinary Medicine (AREA)
- Epidemiology (AREA)
- Primary Health Care (AREA)
- Measuring And Recording Apparatus For Diagnosis (AREA)
Abstract
Description
- Patent Literature 1: JP 2012-032337 A
y=a 0 +a 1 x 1 +a 2 x 2 + . . . a N x N
- 1 information processing server
- 2 user terminal
- 11 communication unit
- 12 storage unit
- 12 a member information DB
- 12 b body temperature DB
- 12 c menstrual date DB
- 13 input/output interface
- 14 system controller
- 14 a CPU
- 14 b ROM
- 14 c RAM
- 15 system bus
- 141 regression equation obtainer
- 142 reference body temperature determiner
- 143 estimator
- 144 second regression equation obtainer
- 145 second reference body temperature determiner
- 146 second estimator
- 147 degree determiner
- 148 reliability determiner
- NW network
- S information processing system
Claims (12)
Applications Claiming Priority (1)
| Application Number | Priority Date | Filing Date | Title |
|---|---|---|---|
| PCT/JP2013/082002 WO2015079526A1 (en) | 2013-11-28 | 2013-11-28 | Information processing device, information processing method, and information processing program |
Publications (2)
| Publication Number | Publication Date |
|---|---|
| US20160296210A1 US20160296210A1 (en) | 2016-10-13 |
| US10376245B2 true US10376245B2 (en) | 2019-08-13 |
Family
ID=51031093
Family Applications (1)
| Application Number | Title | Priority Date | Filing Date |
|---|---|---|---|
| US15/037,756 Active 2035-03-09 US10376245B2 (en) | 2013-11-28 | 2013-11-28 | Information processing device, information processing method, and information processing program |
Country Status (3)
| Country | Link |
|---|---|
| US (1) | US10376245B2 (en) |
| JP (1) | JP5508610B1 (en) |
| WO (1) | WO2015079526A1 (en) |
Families Citing this family (16)
| Publication number | Priority date | Publication date | Assignee | Title |
|---|---|---|---|---|
| JP6091981B2 (en) * | 2013-04-25 | 2017-03-08 | オムロンヘルスケア株式会社 | Menstruation scheduled date calculation device and program |
| US11013497B2 (en) * | 2014-03-28 | 2021-05-25 | Mti Ltd. | Program for predicting day of ovulation and method of predicting the same |
| CN105105719A (en) * | 2015-07-17 | 2015-12-02 | 中山市中舜信息科技有限公司 | Method and device for intelligently measuring human body temperature and predicting female ovulatory period |
| US10983671B2 (en) * | 2015-09-07 | 2021-04-20 | Rakuten, Inc. | Terminal device, information processing method, and information processing program |
| CN107252323B (en) * | 2017-06-05 | 2020-06-26 | 厦门美柚股份有限公司 | Method and device for predicting female physiological cycle and user equipment |
| MX2021000402A (en) | 2018-07-12 | 2021-04-13 | Prima Temp Inc | APPARATUS AND METHODS FOR VAGINAL TEMPERATURE DETECTION. |
| KR102166124B1 (en) * | 2018-08-29 | 2020-10-16 | 이예진 | Method for preventing women's diseases by analyzing women's biosignals and predicting menstrual pain based on machine learning |
| US11152100B2 (en) | 2019-06-01 | 2021-10-19 | Apple Inc. | Health application user interfaces |
| US11234077B2 (en) | 2019-06-01 | 2022-01-25 | Apple Inc. | User interfaces for managing audio exposure |
| US12002588B2 (en) | 2019-07-17 | 2024-06-04 | Apple Inc. | Health event logging and coaching user interfaces |
| CN114706505B (en) | 2019-09-09 | 2025-01-28 | 苹果公司 | Research User Interface |
| AU2021283914A1 (en) | 2020-06-02 | 2023-01-19 | Apple Inc. | User interfaces for tracking of physical activity events |
| DK181037B1 (en) | 2020-06-02 | 2022-10-10 | Apple Inc | User interfaces for health applications |
| US11698710B2 (en) | 2020-08-31 | 2023-07-11 | Apple Inc. | User interfaces for logging user activities |
| WO2024054378A1 (en) * | 2022-09-06 | 2024-03-14 | Apple Inc. | User interfaces for health tracking |
| KR102803332B1 (en) * | 2022-11-08 | 2025-05-07 | 주식회사 메쥬 | Method and device for providing menstrual related information |
Citations (3)
| Publication number | Priority date | Publication date | Assignee | Title |
|---|---|---|---|---|
| JP2012032337A (en) | 2010-08-02 | 2012-02-16 | Terumo Corp | Female clinical thermometer and control method thereof |
| US9155523B2 (en) * | 2006-09-05 | 2015-10-13 | Fertility Focus Limited | Method of detecting and predicting ovulation and the period of fertility |
| US9592033B2 (en) * | 2013-01-28 | 2017-03-14 | Rakuten, Inc. | Information processing apparatus, server apparatus, information processing method, information processing program, and recording medium recording information processing program therein |
Family Cites Families (4)
| Publication number | Priority date | Publication date | Assignee | Title |
|---|---|---|---|---|
| JPS52122064A (en) * | 1976-03-23 | 1977-10-13 | Kondo Shin | Lady*s menses count display unit for digital electronic calculator |
| JP4240632B2 (en) * | 1999-02-10 | 2009-03-18 | パナソニック株式会社 | Ladies thermometer |
| JP5792446B2 (en) * | 2010-09-10 | 2015-10-14 | テルモ株式会社 | Display processing apparatus and display processing method |
| JP2012125349A (en) * | 2010-12-14 | 2012-07-05 | Terumo Corp | Clinical thermometer for woman and control method |
-
2013
- 2013-11-28 JP JP2014504903A patent/JP5508610B1/en active Active
- 2013-11-28 WO PCT/JP2013/082002 patent/WO2015079526A1/en active Application Filing
- 2013-11-28 US US15/037,756 patent/US10376245B2/en active Active
Patent Citations (3)
| Publication number | Priority date | Publication date | Assignee | Title |
|---|---|---|---|---|
| US9155523B2 (en) * | 2006-09-05 | 2015-10-13 | Fertility Focus Limited | Method of detecting and predicting ovulation and the period of fertility |
| JP2012032337A (en) | 2010-08-02 | 2012-02-16 | Terumo Corp | Female clinical thermometer and control method thereof |
| US9592033B2 (en) * | 2013-01-28 | 2017-03-14 | Rakuten, Inc. | Information processing apparatus, server apparatus, information processing method, information processing program, and recording medium recording information processing program therein |
Non-Patent Citations (1)
| Title |
|---|
| International Search Report of PCT/JP2013/082002, dated Jan. 28, 2014. [PCT/ISA/210]. |
Also Published As
| Publication number | Publication date |
|---|---|
| US20160296210A1 (en) | 2016-10-13 |
| WO2015079526A1 (en) | 2015-06-04 |
| JPWO2015079526A1 (en) | 2017-03-16 |
| JP5508610B1 (en) | 2014-06-04 |
Similar Documents
| Publication | Publication Date | Title |
|---|---|---|
| US10376245B2 (en) | Information processing device, information processing method, and information processing program | |
| JP5775242B1 (en) | Information processing apparatus, information processing method, and information processing program | |
| US10983671B2 (en) | Terminal device, information processing method, and information processing program | |
| US20230298072A1 (en) | System and method to selectively update supplemental content rendered in placement regions of a rendered page | |
| WO2021068617A1 (en) | Method and apparatus for automatically predicting task processing time, electronic device and medium | |
| CN111414534B (en) | Information processing method, apparatus, device and storage medium | |
| CN113780912A (en) | A method and device for determining safety stock | |
| CN108594896A (en) | Oven temperature control method, device and computer readable storage medium | |
| JP5775243B1 (en) | Information processing apparatus, information processing method, and information processing program | |
| WO2023134188A1 (en) | Index determination method and apparatus, and electronic device and computer-readable medium | |
| CN111858563A (en) | Method, device, electronic device, medium and measuring device for correcting measurement data | |
| EP3354193A1 (en) | Information processing device, digestion ratio estimating method, information processing system and digestion ratio estimating program | |
| CN108784748A (en) | A kind of method, apparatus and electronic equipment on predicting ovulation date | |
| JP6660276B2 (en) | Information processing apparatus, information processing system, information processing method, and program | |
| CN118313102A (en) | Method, device, equipment and medium for predicting ultimate recoverable reserves of shale gas reservoirs | |
| CN114157578A (en) | Network state prediction method and device | |
| CN109801112B (en) | Method and device for calculating user score | |
| JP2018046390A (en) | Processing apparatus, system, processing method, and processing program | |
| CN115191871B (en) | Method and device for data time synchronization, cleaning robot and storage medium | |
| CN119415950B (en) | Training method, device and computer program product for sorting model | |
| CN111798284B (en) | Method and device for controlling execution of Internet of things equipment | |
| CN114722294B (en) | Method, apparatus, device, medium, and article for processing data | |
| WO2019033677A1 (en) | Method and apparatus for determining whether user behavior indicates disengagement, and electronic device | |
| CN119848351A (en) | Resource display method, device, electronic equipment and storage medium | |
| JP6850215B2 (en) | Information processing equipment, information processing methods, and programs |
Legal Events
| Date | Code | Title | Description |
|---|---|---|---|
| AS | Assignment |
Owner name: RAKUTEN, INC., JAPAN Free format text: ASSIGNMENT OF ASSIGNORS INTEREST;ASSIGNOR:MATSUSHIMA, KATSUHITO;REEL/FRAME:038646/0622 Effective date: 20160517 |
|
| STPP | Information on status: patent application and granting procedure in general |
Free format text: RESPONSE TO NON-FINAL OFFICE ACTION ENTERED AND FORWARDED TO EXAMINER |
|
| STPP | Information on status: patent application and granting procedure in general |
Free format text: NOTICE OF ALLOWANCE MAILED -- APPLICATION RECEIVED IN OFFICE OF PUBLICATIONS |
|
| STPP | Information on status: patent application and granting procedure in general |
Free format text: PUBLICATIONS -- ISSUE FEE PAYMENT VERIFIED |
|
| STCF | Information on status: patent grant |
Free format text: PATENTED CASE |
|
| AS | Assignment |
Owner name: RAKUTEN GROUP, INC., JAPAN Free format text: CHANGE OF NAME;ASSIGNOR:RAKUTEN, INC.;REEL/FRAME:058314/0657 Effective date: 20210901 |
|
| MAFP | Maintenance fee payment |
Free format text: PAYMENT OF MAINTENANCE FEE, 4TH YEAR, LARGE ENTITY (ORIGINAL EVENT CODE: M1551); ENTITY STATUS OF PATENT OWNER: LARGE ENTITY Year of fee payment: 4 |
|
| AS | Assignment |
Owner name: RAKUTEN GROUP, INC., JAPAN Free format text: CORRECTIVE ASSIGNMENT TO CORRECT THE REMOVE PATENT NUMBERS 10342096;10671117; 10716375; 10716376;10795407;10795408; AND 10827591 PREVIOUSLY RECORDED AT REEL: 58314 FRAME: 657. ASSIGNOR(S) HEREBY CONFIRMS THE ASSIGNMENT;ASSIGNOR:RAKUTEN, INC.;REEL/FRAME:068066/0103 Effective date: 20210901 |